首页> 外文会议>International workshop on complex networks and their applications >LinkAUC: Unsupervised Evaluation of Multiple Network Node Ranks Using Link Prediction
【24h】

LinkAUC: Unsupervised Evaluation of Multiple Network Node Ranks Using Link Prediction

机译:LinkAUC:使用链接预测对多个网络节点等级进行无监督评估

获取原文

摘要

An emerging problem in network analysis is ranking network nodes based on their relevance to metadata groups that share attributes of interest, for example in the context of recommender systems or node discovery services. For this task, it is important to evaluate ranking algorithms and parameters and select the ones most suited to each network. Unfortunately, large real-world networks often comprise sparsely labelled nodes that hinder supervised evaluation, whereas unsupervised measures of community quality, such as density and conductance, favor structural characteristics that may not be indicative of metadata group quality. In this work, we introduce LinkAUC, a new unsupervised approach that evaluates network node ranks of multiple metadata groups by measuring how well they predict network edges. We explain that this accounts for relation knowledge encapsulated in known members of metadata groups and show that it enriches density-based evaluation. Experiments on one synthetic and two real-world networks indicate that LinkAUC agrees with AUC and NDCG for comparing ranking algorithms more than other unsupervised measures.
机译:网络分析中出现的一个新问题是根据网络节点与共享感兴趣属性的元数据组的相关性(例如在推荐系统或节点发现服务的上下文中)对网络节点进行排名。对于此任务,重要的是评估排名算法和参数,并选择最适合每个网络的算法和参数。不幸的是,大型的现实世界网络通常包含标记稀疏的节点,这些节点阻碍了监督评估,而社区质量的未经监督的度量(例如密度和电导率)则偏向于可能无法指示元数据组质量的结构特征。在这项工作中,我们介绍LinkAUC,这是一种新的无监督方法,可通过测量多元数据组预测网络边缘的能力来评估它们的网络节点等级。我们解释说,这解释了封装在元数据组的已知成员中的关系知识,并表明它丰富了基于密度的评估。在一个综合网络和两个真实世界网络上进行的实验表明,LinkAUC与AUC和NDCG相比,在比较排名算法方面比在其他无监督措施上更为一致。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号